Su Kaynakları Yönetiminde Makine Öğrenmesi: Çeltik Sulaması Uygulama Örneği

Author:

KIZIL Ünal1ORCID,ALTINBİLEK Hakkı Fırat2ORCID

Affiliation:

1. ÇANAKKALE ONSEKİZ MART ÜNİVERSİTESİ, ZİRAAT FAKÜLTESİ, TARIMSAL YAPILAR VE SULAMA BÖLÜMÜ

2. İpsala İlçe Tarım ve Orman Müdürlüğü

Abstract

Paddy rice irrigation takes an important role in water consumption. Therefore, the savings to be made in paddy rice irrigation will have significant impacts. In the sustainable use of water resources, both the irrigation methods and the methods to be used in the planning of water resources are critical. Hence, the use of drip irrigation should be expanded. On the other hand, the use of modern satellite technologies and machine learning models should be used while planning irrigation. In this study, Google Earth Engine (GEE), which is a cloud-based image processing platform was employed in the calculation of paddy rice cultivation areas. Random Forest (RF) and Support Vector Machines (SVM) machine learning algorithms were applied. The results showed that RF algorithm can calculate the paddy cultivation areas with an accuracy of 97%. A difference of 27.69 km2 was found between the officially declared cultivation areas and the calculated area. This can yield a miscalculation of water requirement with an error of 33.8, 38.1 and 155 million m3, in subsurface drip irrigation, drip irrigation and basin irrigation methods, respectively. Results showed that accurate calculation of paddy rice cultivation areas and drip irrigation will both minimize this error and allow 4 times more area to be irrigated.

Publisher

COMU Ziraat Fakultesi Dergisi

Subject

General Medicine

Reference38 articles.

1. Anonim, 2003. Rice Irrigation in the Near East: Current Situation and Prospects For Improvement. FAO Regional Office for the Near East Cairo, Egypt. 1-23.

2. Beşer, N., Sürek, H., 2009. Çeltikte (Oryza sativa L.) Damla sulama araştırmaları projesi sonuç raporu. T.C. Tarım ve Köyişleri Bakanlığı, Tarımsal Araştırmalar Genel Müdürlüğü, Trakya Tarımsal Araştırma Enstitüsü Müdürlüğü, Edirne.

3. Blake, L., Warner, T.A., 2014. The information milieu of remote sensing: an overview. Reference Services Review. 42(2):351-363.

4. Bouman, B.A.M., Lampayan, R.M., Tuong, T.P., 2007. Water Management in Irrigated Rice: Coping with Water Scarcity. International Rice Research Institute, Los Banos.

5. Breiman, L., 2001. Random forests. Machine learning. 45(1):5-32.

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